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Unlock the Power of Data Analysis with Python Pandas for Data Science, AI, Machine Learning, and Deep Learning

What you will learn

Understand the basics of Numpy and how to set up the Numpy environment.

Create and access arrays, use indexing and slicing, and work with arrays of different dimensions.

Understand the ndarray object, data types, and conversion between data types.

Work with array attributes and different ways of creating arrays from existing data or ranges functions.

Apply broadcasting, iteration, and updating array values.

Perform array manipulation, joining, transposing, and splitting operations.

Apply string, mathematical, and trigonometric functions.

Perform arithmetic operations, including add, subtract, multiply, divide, floor_divide, power, mod, remainder, reciprocal, negative, and abs.

Apply statistical functions and counting functions.

Sort arrays using different methods, including sort(), argsort(), lexsort(), searchsorted(), partition(), and argpartition().

Understand the different types of array copies, including view, copy, “no copy”, shallow copy, and deep copy.

Description

Introduction to Python Numpy Data Analysis for Data Scientist | AI | ML | DL

The Python Numpy Data Analysis for Data Scientist course is designed to equip learners with the necessary skills for data analysis in the fields of artificial intelligence, machine learning, and deep learning.

This course covers an array of topics such as creating/accessing arrays, indexing, and slicing array dimensions, and ndarray object. Learners will also be taught data types, conversion, and array attributes.

The course further delves into broadcasting, array manipulation, joining, splitting, and transposing operations.

Learners will gain insight into Numpy binary operators, bitwise operations, left and right shifts, string functions, mathematical functions, and trigonometric functions.

Additionally, the course covers arithmetic operations, statistical functions, and counting functions. Sorting, view, copy, and the differences among all copy methods are also covered.

By the end of the course, learners will be proficient in using Python Numpy for data analysis, making them ready to take on the challenges of the data science industry.

What you can do with Pandas Python

  1. Data analysis: Pandas is often used in data analysis to perform tasks such as data cleaning, manipulation, and exploration.
  2. Data visualization: Pandas can be used with visualization libraries such as Matplotlib and Seaborn to create visualizations from data.
  3. Machine learning: Pandas is often used in machine learning workflows to preprocess data before training models.
  4. Financial analysis: Pandas is used in finance to analyze and manipulate financial data.
  5. Social media analysis: Pandas can be used to analyze and manipulate social media data.
  6. Scientific computing: Pandas is used in scientific computing to manipulate and analyze large amounts of data.
  7. Business intelligence: Pandas can be used in business intelligence to analyze and manipulate data for decision-making.
  8. Web scraping: Pandas can be used in web scraping to extract data from web pages and analyze it.

********** Instructors Experiences and Education: **********

Faisal Zamir is an experienced programmer and an expert in the field of computer science. He holds a Master’s degree in Computer Science and has over 7 years of experience working in schools, colleges, and university. Faisal is a highly skilled instructor who is passionate about teaching and mentoring students in the field of computer science.

As a programmer, Faisal has worked on various projects and has experience in multiple programming languages, including PHP, Java, and Python. He has also worked on projects involving web development, software engineering, and database management. This broad range of experience has allowed Faisal to develop a deep understanding of the fundamentals of programming and the ability to teach complex concepts in an easy-to-understand manner.

As an instructor, Faisal has a proven track record of success. He has taught students of all levels, from beginners to advanced, and has a passion for helping students achieve their goals. Faisal has a unique teaching style that combines theory with practical examples, which allows students to apply what they have learned in real-world scenarios.

Overall, Faisal Zamir is a skilled programmer and a talented instructor who is dedicated to helping students achieve their goals in the field of computer science. With his extensive experience and proven track record of success, students can trust that they are learning from an expert in the field.

What you will learn in this course Python Numpy Data Analysis for Data Scientist

These are the outlines, you can read that will be covered in the course:

Chapter 01

Introduction to Numpy

Numpy Environnent Setup

Chapter 02

Creating /Accessing Array

Indexing & Slicing

Array dimensions  (1, 2, 3, ..N)

ndarray Object

Data types

Data type Conversion

Chapter 03

Array attributes

Array ndarray object attributes

Array creation in different ways

Array from existed data

Array from ranges function

Chapter 04

Broadcasting

Array iteration

Update Array values

Broadcasting iteration

Chapter 05

Array Manipulation Operations

Array Joining Operations

Array Transpose Operations

Array Splitting Operations

Array More Operations

Chapter 06

Numpy binary operators – Binary Operations

bitwise_and


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bitwise_or

numpy.invert()

left_shift

right_shift

Chapter 07

String Functions

Mathematical Functions

Trigonometric Functions

Chapter 08

Arithmetic operations

Add

Subtract

Multiply

Divide

floor_divide

Power

Mod

Remainder

Reciprocal

Negative

abs

Statistical functions

Counting functions

Chapter 09

Sorting

sort()

argsort()

lexsort()

searchsorted()

partition()

argpartition()

Chapter 10

View

Copy

“No Copy”

Shallow Copy

Deep Copy

The difference among all copies method

30-day money-back guarantee for Python Numpy Data Analysis for Data Scientists

Great! It’s always reassuring to have a money-back guarantee when making a purchase, especially for an online course. With the “Python Numpy Data Analysis for Data Scientist | AI | ML | DL” course, you can have peace of mind knowing that you have a 30-day money-back guarantee.

This means that if you are not satisfied with the course within the first 30 days of purchase, you can request a full refund.

This shows the confidence of the course provider in the quality of their content, and it gives you the opportunity to try out the course risk-free.

So if you’re looking to improve your skills in Python data analysis for data science, AI, ML, or DL, this course is definitely worth considering.

Thank you

Faisal Zamir

English
language

Content

Python Numpy Chapter 01

01 Numpy Chapter 01 Introduction
02 Introduction to Numpy
03 Numpy Environment Setup
04 Numpy Programming Example

Python Numpy Chapter 02

05 Numpy Chapter 02 Introduction
06 Creating Array in Numpy
07 Indexing and Slicing with Array
08 ndarray Object in Numpy
09 Data Types in Numpy Part 01
10 Data Types in Numpy Part02
11 Data Types Conversion in Numpy

Python Numpy Chapter 03

12 Numpy Chapter 03 Introduction
13 Array Attributes
14 Array vs ndarray Attributes
15 Array Methods
16 Empty Array Creation
17 Zeros Array Creation
18 Ones Creation Array
19 Asarray Method in Numpy